A microarray gene expressions with classification using extreme learning machine

In the present scenario, one of the dangerous disease is cancer. It spreads through blood or lymph to other location of the body, it is a set of cells display uncontrolled growth, attack and destroy nearby tissues, and occasionally metastasis. In cancer diagnosis and molecular biology, a...

Full description

Bibliographic Details
Main Authors: Yasodha M., Ponmuthuramalingam P.
Format: Article
Language:English
Published: Serbian Genetics Society 2015-01-01
Series:Genetika
Subjects:
Online Access:http://www.doiserbia.nb.rs/img/doi/0534-0012/2015/0534-00121502523Y.pdf
id doaj-8fda1c95e66344c19d0b854e5ed8e272
record_format Article
spelling doaj-8fda1c95e66344c19d0b854e5ed8e2722020-11-24T20:41:31ZengSerbian Genetics SocietyGenetika0534-00121820-60692015-01-0147252353410.2298/GENSR1502523Y0534-00121502523YA microarray gene expressions with classification using extreme learning machineYasodha M.0Ponmuthuramalingam P.1Government Arts College (Autonomous), Coimbatore, Tamilnadu, India, Ph.D Research ScholarGovernment Arts College (Autonomous), Coimbatore, Tamilnadu, IndiaIn the present scenario, one of the dangerous disease is cancer. It spreads through blood or lymph to other location of the body, it is a set of cells display uncontrolled growth, attack and destroy nearby tissues, and occasionally metastasis. In cancer diagnosis and molecular biology, a utilized effective tool is DNA microarrays. The dominance of this technique is recognized, so several open doubt arise regarding proper examination of microarray data. In the field of medical sciences, multicategory cancer classification plays very important role. The need for cancer classification has become essential because the number of cancer sufferers is increasing. In this research work, to overcome problems of multicategory cancer classification an improved Extreme Learning Machine (ELM) classifier is used. It rectify problems faced by iterative learning methods such as local minima, improper learning rate and over fitting and the training completes with high speed.http://www.doiserbia.nb.rs/img/doi/0534-0012/2015/0534-00121502523Y.pdfgene expression datagene rankingfeature selection and classification
collection DOAJ
language English
format Article
sources DOAJ
author Yasodha M.
Ponmuthuramalingam P.
spellingShingle Yasodha M.
Ponmuthuramalingam P.
A microarray gene expressions with classification using extreme learning machine
Genetika
gene expression data
gene ranking
feature selection and classification
author_facet Yasodha M.
Ponmuthuramalingam P.
author_sort Yasodha M.
title A microarray gene expressions with classification using extreme learning machine
title_short A microarray gene expressions with classification using extreme learning machine
title_full A microarray gene expressions with classification using extreme learning machine
title_fullStr A microarray gene expressions with classification using extreme learning machine
title_full_unstemmed A microarray gene expressions with classification using extreme learning machine
title_sort microarray gene expressions with classification using extreme learning machine
publisher Serbian Genetics Society
series Genetika
issn 0534-0012
1820-6069
publishDate 2015-01-01
description In the present scenario, one of the dangerous disease is cancer. It spreads through blood or lymph to other location of the body, it is a set of cells display uncontrolled growth, attack and destroy nearby tissues, and occasionally metastasis. In cancer diagnosis and molecular biology, a utilized effective tool is DNA microarrays. The dominance of this technique is recognized, so several open doubt arise regarding proper examination of microarray data. In the field of medical sciences, multicategory cancer classification plays very important role. The need for cancer classification has become essential because the number of cancer sufferers is increasing. In this research work, to overcome problems of multicategory cancer classification an improved Extreme Learning Machine (ELM) classifier is used. It rectify problems faced by iterative learning methods such as local minima, improper learning rate and over fitting and the training completes with high speed.
topic gene expression data
gene ranking
feature selection and classification
url http://www.doiserbia.nb.rs/img/doi/0534-0012/2015/0534-00121502523Y.pdf
work_keys_str_mv AT yasodham amicroarraygeneexpressionswithclassificationusingextremelearningmachine
AT ponmuthuramalingamp amicroarraygeneexpressionswithclassificationusingextremelearningmachine
AT yasodham microarraygeneexpressionswithclassificationusingextremelearningmachine
AT ponmuthuramalingamp microarraygeneexpressionswithclassificationusingextremelearningmachine
_version_ 1716824748754731008